Method of determining an acquisition indicator bit in a communication system

ABSTRACT

A method of determining an acquisition indicator bit AI s  at a receiver in a communication system which includes receiving multiplexed acquisition indicator bits y=B×AI+n, where B is the signature matrix known at both base station and UE, AI is all the acquisition indicator bits and n represents noise. Next, an estimated value of the acquisition indicator bit AÎ MMSE  (s) as a function of 
               ∑   j             ⁢           ⁢         B   T     ⁡     (     s   ,   j     )       ×     y   ⁡     (   j   )               
is calculated, where B T (s,.) is the s-th row vector of the transposed matrix B T  for acquisition indicator bit AI s . Finally, the acquisition indicator bit AI s  is set as follows:
   AI   s =−1, if  AÎ   MMSE ( s )&lt; R     AI   s =0, if  R≦AÎ   MMSE ( s )&lt; U     AI   s =1, if  AÎ   MMSE ( s )≧ U,   
where R and U are decision thresholds.

CROSS REFERENCE

This is a continuation-in-part of U.S. patent application Ser. No. 10/190,579 filed Jul. 9, 2002, now U.S. Pat. No. 6,944,205 which is incorporated herein by reference.

BACKGROUND AND SUMMARY OF THE INVENTION

The present invention relates generally to communication systems of coded data and, more specifically, to an improvement in determining an acquisition indicator bit at a receiver in a communication system.

Although the present invention will be described with respect to 3^(rd) generation wideband code division multiple access (3G WCDMA) system, the same method can be used for determining an acquisition bit AI_(s) at a receiver in other communication systems. General and specific references will also be made to the 3G WCDMA standard 3GPP TS 25.211, Physical channels and mapping of transport channels onto physical channels (FDD) (Release 4) and 3GPP TS 25.213, “Spreading and modulation (FDD)” (Release 4).

In 3^(rd) generation CDMA systems, physical connections between UE (User Equipment) and base stations are established through the Physical Random Access Channel (PRACH) and Acquisition Indicator Channel (AICH). The UE transmits PRACH signal that carries the RACH preamble and message to a base station, to request a connection. When the base station recognizes a PRACH preamble, it responds with AICH to UE to indicate if the connection request is granted. An example of the AICH from 3GPP TS 25.211 is shown in FIG. 1.

Upon the AICH reception, the problem is to estimate the AI_(s) based on the received real valued symbols a₀, a₁, . . . , a₃₁ which are transmitted through AICH, where AI_(s) ε{−1,0,1} and s=0,1, . . . , 15. An AI_(s) of 0 indicates that the signature s is not a member of the set of available signatures. An AI_(s) of 1 indicates a positive acknowledgement, and an AI_(s) of −1 indicates a negative acknowledgement. At the base station, AI_(s) is code multiplexed with others, {AI_(n): n≠s}, by the following formula:

$\begin{matrix} {{a_{j} = {\sum\limits_{s = 0}^{15}\;{{AI}_{s}b_{s,j}}}},{j = 0},1,\;\ldots\mspace{14mu},31,} & (1) \end{matrix}$ where {b_(s,j): j=0,1, . . . 31} are given in Table 21 in 3GPP TS 25.211 and shown below in the example as B

The present invention is a method of determining an acquisition indicator bit AI_(s) at a receiver in a communication system. The method includes receiving multiplexed acquisition indicator bits y=B×AI+n, where B is the signature matrix known at both base station and UE, AI is the set of all the acquisition indicator bits and n represents noise, for example, AWGN (additive white Gaussian noise). Next, an estimated value of the acquisition indicator bit

$A\;{{\hat{I}}_{MMSE}(s)}\mspace{14mu}{as}\mspace{14mu} a\mspace{14mu}{function}\mspace{14mu}{of}\mspace{14mu}{\sum\limits_{j}^{\;}\;{{B^{T}\left( {s,j} \right)} \times {y(j)}}}$ is calculated, where B^(T) (s,.) is the s-th row vector of the transposed matrix B^(T) for acquisition indicator bit AI_(s). Finally, the acquisition indicator bit AI_(s) is set as follows: AI _(s)=−1, if AÎ_(MMSE) (s)<R AI _(s)═0, if R≦AÎ_(MMSE) (s)<U AI _(s)=1, if AÎ_(MMSE) (S)≧U, where R and U are decision thresholds.

The constants R and U may be equal absolute values, for example, −0.5 and 0.5, respectively. The estimated value AÎ_(MMSE) (s) is calculated by

${A\;{{\hat{I}}_{MMSE}(s)}} = {\frac{1}{\left( {32 + {\hat{\sigma}}^{2}} \right)}{\sum\limits_{j = 0}^{31}\;{{B^{T}\left( {s,j} \right)} \times {{y(j)}.}}}}$ The method pre-stores a matrix B or B^(T) and is performed in software.

These and other aspects of the present invention will become apparent from the following detailed description of the invention, when considered in conjunction with accompanying drawings.

BRIEF DESCRIPTION OF THE DRAWINGS

FIG. 1 is a diagram of the structure of the acquisition indicator channel AICH of the 3G WCDMA system defined in 3GPP TS 25.211.

FIG. 2 is a flow chart of a method of determining an acquisition indicator bit AI_(s) incorporating the principles of the present invention.

DETAILED DESCRIPTION OF THE PREFERRED EMBODIMENTS

The method of the present invention, which is performed at the receiver of a communication system, is illustrated in FIG. 2. The input signal y is received at 10. An estimated acquisition indicator (AÎ_(ML)(s)) is calculated from the input signal y. The resulting estimated acquisition indicator corresponding to a signature index s, AÎ_(ML)(s) is then used for determining an acquisition indicator bit AI_(s) having one of the values −1,0,1. The decided acquisition indicator bit is outputted at 16. The details of the method are described as follows:

In matrix form, equation (1) can be expressed as

$\begin{matrix} \begin{matrix} {{a = {B \times {AI}}},} \\ {where} \\ {{a = \left\lbrack {a_{0},a_{1},\ldots\mspace{11mu},a_{31}} \right\rbrack^{T}},} \\ {{B = \begin{bmatrix} b_{0,0} & b_{1,0} & b_{2,0} & \cdots & b_{15,0} \\ b_{0,1} & b_{1,1} & b_{2,1} & \cdots & b_{15,1} \\  \cdot & \cdot & \cdot & \cdot & \cdot \\  \cdot & \cdot & \cdot & \cdot & \cdot \\ b_{0,31} & b_{1,31} & b_{2,31} & \cdots & b_{15,31} \end{bmatrix}},} \\ {and} \\ {{AI} = {\left\lbrack {{AI}_{0},{AI}_{1},\ldots\mspace{11mu},{AI}_{15}} \right\rbrack^{T}.}} \end{matrix} & (2) \end{matrix}$

The received soft bits from a rake receiver can be modeled as y=a+n

-   -   or         y=B×AI+n,  (3)         where n denotes noise, for example, the AWGN.

The maximum likelihood estimator for the unknown acquisition indicator, AÎ_(ML), in equation (3) is well known (see S. M. Kay, Fundamentals of Statistical Signal Processing (Estimation Theory), Prentice Hall) and is given by AÎ _(ML)=(B ^(T) ×B)⁻¹ ×B ^(T) ×y.  (4) Due to orthogonality (see Table 21 in 3GPP TS 25.211), B ^(T) ×B=32×I _(16×16),  (5) where I_(16×16) is the identity matrix with dimension 16.

Thus, equation (4) can be reduced to

$\begin{matrix} {{A\;{\hat{I}}_{ML}} = {\frac{1}{32} \times B^{T} \times {y.}}} & (6) \end{matrix}$

It is assumed that the table index, s, for AICH signature patterns is equivalent to the one for the RACH preamble signatures from Table 3 in 3GPP TS 25.213. In other words, the index s is known at the user equipment UE so that only the portion corresponding to s of equation (6) is of interest.

Let T_(s)(y) be a statistic corresponding to an index s, given y

$\begin{matrix} {{{T^{s}(y)} = {{A\;{{\hat{I}}_{ML}(s)}} = {\frac{1}{32}{\sum\limits_{j = 0}^{31}\;{{B^{T}\left( {s,j} \right)} \times {y(j)}}}}}},} & (7) \end{matrix}$ where B^(T)(s,.) denotes the s-th row vector of the matrix BT.

Assuming uniform prior for the following hypotheses, H ⁻¹ : AI _(s)=−1, H ₀ : AI _(s)=0 H ₁ : AI _(s)=1, s=0,1, . . . , 15, the 3-arry MAP decision rule (see S. M. Kay, Fundamentals of Statistical Signal Processing (Detection Theory), Prentice Hall) is to decide AI _(s)=−1, if T^(s)(y)<R AI _(s)=0, if R≦T^(s)(y)<U AI _(s)=1, if T^(s)(y)≧U, where U and R are constants. The {H_(i), i=−1,0,1} denote the hypotheses that the acquisition indicator bit is i. Assuming perfect channel, the constants R and U may be equal absolute values, for example, −0.5 and 0.5, respectively.

To improve the estimation, an MMSE (Minimum Mean Square Error) estimator that is given by the following may be used AÎ _(MMSE)=(B ^(T) ×B+{circumflex over (σ)} ² I)⁻¹ ×B ^(T) ×y,  (8) where {circumflex over (σ)}² represents the estimated noise variance at the receiver. The MMSE estimator is the solution that takes into account the background noise.

With (8), (4) can be reduced to

$\begin{matrix} {{A\;{\hat{I}}_{MMSE}} = {\frac{1}{\left( {32 + {\hat{\sigma}}^{2}} \right)} \times B^{T} \times {y.}}} & (9) \end{matrix}$ Let T^(s)(y) be a statistic corresponding to an index s, given y

$\begin{matrix} {{{T^{s}(y)} = {{A\;{{\hat{I}}_{MMSE}(s)}} = {\frac{1}{\left( {32 + {\hat{\sigma}}^{2}} \right)}{\sum\limits_{j = 0}^{31}\;{{B^{T}\left( {s,j} \right)} \times {y(j)}}}}}},} & (10) \end{matrix}$

As an illustrative example, let AI₀=−1, AI₁=−1, AI₂=1, AI₃=−1, AI₄=−1, AI₅=−1, AI₆=−1, AI₇=−1, AI⁸⁼⁻¹, AI₉=−1, AI₁₀=0, AI₁₁=−1, AI₁₂=−1, AI₁₃=−1, AI₁₄=−1, and AI₁₅=0.

Since AI is defined by AI=[AI ₀ AI ₁ AI ₂ AI ₃ AI ₄ AI ₅ AI ₆ AI ₇ AI ₈ AI ₉ AI ₁₀ AI ₁₁ AI ₁₂ AI ₁₃ AI ₁₄ AI ₁₅ ]^T, where T denote the transpose, that is

$\begin{matrix} {{AI} = \left\lbrack {- 1} \right.} \\ {\mspace{65mu}{- 1}} \\ {\mspace{79mu} 1} \\ {\mspace{59mu}{- 1}} \\ {\mspace{76mu} 1} \\ {\;{- 1}} \\ {- 1} \\ {- 1} \\ {- 1} \\ {- 1} \\ 0 \\ {- 1} \\ {- 1} \\ {- 1} \\ {- 1} \\ {\left. \mspace{59mu} 0 \right\rbrack.} \end{matrix}$ The matrix B (of size 32×16) in (2) is given by

$\begin{matrix} {B = \left\lbrack {1,} \right.} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1} \\ {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1} \\ {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {- 1} \\ {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {- 1} \\ {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {- 1} \\ {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {- 1} \\ {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1} \\ {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1} \\ {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {- 1} \\ {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {- 1} \\ {1,} & {{- 1},} & {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1,} & {1,} & {{- 1},} & {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1} \\ {1,} & {{- 1},} & {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1,} & {1,} & {{- 1},} & {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1} \\ {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1} \\ {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1} \\ {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1,} & {1,} & {{- 1},} & {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1,} & {1,} & {- 1} \\ {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1,} & {1,} & {{- 1},} & {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1,} & {1,} & {- 1} \\ {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {- 1} \\ {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {- 1} \\ {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1} \\ {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1} \\ {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1} \\ {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1} \\ {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {- 1} \\ {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {- 1} \\ {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1} \\ {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1} \\ {1,} & {{- 1},} & {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {1,} & {{- 1},} & {1,} & {- 1} \\ {1,} & {{- 1},} & {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {{- 1},} & {1,} & {1,} & {{- 1},} & {1,} & {- 1} \\ {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {- 1} \\ {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {- 1} \\ {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {1,} & {{- 1},} & {{- 1},} & {1} \\ {1,} & {{- 1},} & {{- 1},} & {1,} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {1,} & {{- 1},} & {{- 1},} & {\left. 1 \right\rbrack.} \end{matrix}$ For instance, b_(0,0)=1 and b_(2,1)=−1. The transposed B is then

$\begin{matrix} {B^{T} = \left\lbrack {1,\begin{matrix} {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {\mspace{14mu}{1,}} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} \end{matrix}} \right.} \\ {\begin{matrix} {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} \end{matrix}} \\ {\begin{matrix} {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} \end{matrix}} \\ {\begin{matrix} {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} \end{matrix}} \\ {\begin{matrix} {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} \end{matrix}} \\ {\begin{matrix} {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} \end{matrix}} \\ {\begin{matrix} {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} \end{matrix}} \\ {\begin{matrix} {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} \end{matrix}} \\ {\begin{matrix} {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} \end{matrix}} \\ {\begin{matrix} {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} \end{matrix}} \\ {\begin{matrix} {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} \end{matrix}} \\ {1,\mspace{11mu} 1,\mspace{11mu}{- 1},\mspace{11mu}{- 1},\mspace{11mu}{- 1},\;{- 1},\mspace{11mu} 1,\mspace{11mu} 1,\mspace{11mu} 1,\mspace{11mu} 1,\mspace{11mu}{- 1},\;{- 1},\mspace{11mu}{- 1},\mspace{11mu}{- 1},\mspace{11mu} 1,\mspace{11mu} 1,\mspace{11mu}{- 1},\mspace{11mu}{- 1},\mspace{11mu} 1,\mspace{11mu} 1,\mspace{11mu} 1,\mspace{14mu} 1,\mspace{14mu}{- 1},\mspace{14mu}{- 1},\mspace{14mu}{- 1},\mspace{14mu}{- 1},\mspace{14mu} 1,\mspace{14mu} 1,\mspace{14mu} 1,\mspace{14mu} 1,\mspace{14mu}{- 1},\mspace{14mu}{- 1},} \\ {\begin{matrix} {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} \end{matrix}} \\ {\begin{matrix} {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} \end{matrix}} \\ {\begin{matrix} {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} \end{matrix}} \\ {\begin{matrix} {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & {1,} & {1,} & {1,} & {{- 1},} & {{- 1},} & {1,} & {1,} & {{- 1},} & {{- 1},} & {{- 1},} & {{- 1},} & {1,} & \left. 1 \right\rbrack \end{matrix}} \end{matrix}$ From equation (3), a=B×AI. Note that the size of y, a, B. and AI are 32×1, 32×1, 32×16, and 16×1, respectively. The calculated a is then

$\begin{matrix} {a = \left\lbrack {- 12} \right.} \\ {- 12} \\ {2} \\ {2} \\ {- 4} \\ {- 4} \\ {- 2} \\ {- 2} \\ {2} \\ {2} \\ {4} \\ {4} \\ {- 2} \\ {- 2} \\ {- 4} \\ {- 4} \\ {0} \\ {0} \\ {2} \\ {2} \\ {0} \\ {0} \\ {- 2} \\ {- 2} \\ {2} \\ {2} \\ {0} \\ {0} \\ {- 2} \\ {- 2} \\ {0} \\ {\left. 0 \right\rbrack.} \end{matrix}$

From equation (3), the noise is assumed as the additive white Gaussian. Suppose the noise values are given by

$\begin{matrix} {n = \left\lbrack 0.1703 \right.} \\ {0.3561} \\ {0.2907} \\ {0.2298} \\ {0.0160} \\ {0.2692} \\ {0.2262} \\ {- 0.1017} \\ {- 0.1501} \\ {- 0.1177} \\ {- 0.5866} \\ {- 0.0930} \\ {0.0471} \\ {0.1252} \\ {0.5740} \\ {- 0.1396} \\ {0.2478} \\ {0.3177} \\ {0.3741} \\ {- 0.3945} \\ {0.0843} \\ {0.0946} \\ {- 0.4007} \\ {- 0.2951} \\ {0.4304} \\ {- 0.0523} \\ {0.1550} \\ {0.0350} \\ {- 0.2527} \\ {- 0.2225} \\ {0.1764} \\ {\left. {- 0.3777} \right\rbrack.} \end{matrix}$

Then from equation (3), the observed samples, y, is

$\begin{matrix} {y = \left\lbrack {- 11.8297} \right.} \\ {- 11.6439} \\ {2.2907} \\ {2.2298} \\ {- 3.9840} \\ {- 3.7308} \\ {- 1.7738} \\ {- 2.1017} \\ {1.8499} \\ {1.8823} \\ {3.4134} \\ {3.9070} \\ {- 1.9529} \\ {- 1.8748} \\ {- 3.4260} \\ {- 4.1396} \\ {0.2478} \\ {0.3177} \\ {2.3741} \\ {1.6055} \\ {0.0843} \\ {0.0946} \\ {- 2.4007} \\ {- 2.2951} \\ {2.4304} \\ {1.9477} \\ {0.1550} \\ {0.0350} \\ {- 2.2527} \\ {- 2.2225} \\ {0.1764} \\ {\left. {- 0.3777} \right\rbrack.} \end{matrix}$

The y is the noisy version of the received acquisition indicator bits carried over AICH.

Assume that the signature index s is 2, then by equation (3), the AI₂ can be estimated as

$\begin{matrix} {{A{{\hat{I}}_{ML}(2)}} = {{\frac{1}{32}{\sum\limits_{j = 0}^{31}{{B^{T}\left( {2,j} \right)} \times {y(j)}}}} = {{1/32}*\left( {{1*\text{-}11.8297} +} \right.}}} \\ {{1*\text{-}11.6439} + {1*2.2907} + {\ldots\mspace{14mu}\text{-}1*0.1764} +} \\ {\left. {\text{-}1*\text{-}0.3777} \right) = {1.0434.}} \end{matrix}$ This is the multiplication of two vectors, the 3^(rd) row of B^(T) and y. Since AÎML (2) is greater than 0.5 using U=0.5, the decision can be made as AÎ(2)=1, which is matched with the initial setting, AI₂=1.

Although the present invention has been described and illustrated in detail, it is to be clearly understood that the same is by way of illustration and example only, and is not to be taken by way of limitation. The scope of the present invention are to be limited only by the terms of the appended claims. 

1. A method of determining an acquisition indicator bit AI_(s) at a receiver in a communication system, the method comprising: receiving multiplexed acquisition bits y=B×AI+n, where B is the signature matrix known at both base station and the receiver, AI is all the acquisition indicator bits and n represents noise; calculating an estimated value of the AI bit of interest AÎ_(MMSE) (s) as a function of ${\sum\limits_{j}{{B^{T}\left( {s,j} \right)} \times {y(j)}}},$ where B^(T) (s,.) is the s-th row vector of the transposed matrix B^(T) for acquisition indicator bit AI_(s); and setting the acquisition indicator bit AI_(s) as follows: AI _(s)=−1, if AÎ _(MMSE)(s)<R AI _(s)=0, if R≦AÎ _(MMSE)(s)<U AI _(s)=1, if AÎ _(MMSE)(s)≧U where R and U are decision thresholds, wherein the estimated value AÎ_(MMSE)(S) is calculated by ${{A{{\hat{I}}_{MMSE}(s)}} = {\frac{1}{\left( {J + {\hat{\sigma}}^{2}} \right)}{\sum\limits_{0}^{J - 1}{{B^{T}\left( {s,j} \right)} \times {y(j)}}}}},$ wherein {circumflex over (σ)}² represents estimated noise variance at the receiver, and J is an integer greater than or equal to
 0. 2. The method according to claim 1, wherein R and U are equal absolute values.
 3. The method according to claim 1, wherein R and U are −0.5 and 0.5, respectively.
 4. The method according to claim 1, wherein the estimated value AÎ_(MMSE)(s) is calculated for J=32, thereby resulting in the equation: ${A{{\hat{I}}_{MMSE}(s)}} = {\frac{1}{\left( {32 + {\hat{\sigma}}^{2}} \right)}{\sum\limits_{0}^{31}{{B^{T}\left( {s,j} \right)} \times {{y(j)}.}}}}$
 5. The method of any of claim 1, wherein the method pre-stores a matrix B or B^(T).
 6. The method of any of claim 1, wherein the method is performed in software. 